Adversarial Learning Based on Global and Local Features for Cross-Modal Person Re-identification

Zizhen Shuai, Shuaishuai Li, Yang Gao, Fei Wu
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引用次数: 2

Abstract

In recent years, a great improvement has been achieved in cross-modal person re-identification (Re-ID) methods based on feature partition. However, many works do not use global and local features jointly to improve the accuracy of person identification. It is an important research topic to fully extract and use global features as well as local features, and effectively reduce modality differences. In this paper, we propose an adversarial learning based on global and local features (ALGL) method. We adopt a two-stream network with partially shared parameters as a feature extraction network to extract visible and infrared feature maps. Local features are obtained through Part-based Convolutional Baseline (PCB) operations on feature maps with the local feature learning module. In the global feature learning module, the average pooling is used to obtain the global features. In order to fully explore the discriminative abilities of local features and global features, hetero-center based triplet loss is designed, which brings features of the same category closer, and features of different categories farther away. At the same time, the adversarial learning module minimizes the modality difference between visible and infrared modalities. Experimental results on the SYSU-MM01 and RegDB datasets show that ALGL outperforms the state-of-the-art solutions.
基于全局和局部特征的对抗学习跨模态人物再识别
近年来,基于特征划分的跨模态人再识别(Re-ID)方法取得了很大的进步。然而,许多工作并没有将全局特征和局部特征结合起来,以提高人物识别的准确性。充分提取和利用全局特征和局部特征,有效减小模态差异是一个重要的研究课题。本文提出了一种基于全局和局部特征(ALGL)的对抗学习方法。我们采用部分共享参数的两流网络作为特征提取网络,提取可见光和红外特征图。通过局部特征学习模块对特征映射进行基于部分的卷积基线(PCB)运算,获得局部特征。在全局特征学习模块中,采用平均池化方法获取全局特征。为了充分挖掘局部特征和全局特征的判别能力,设计了基于异中心的三重态损失,使同类别特征之间的距离更近,而不同类别特征之间的距离更远。同时,对抗性学习模块最大限度地减少了可见光和红外模态之间的模态差异。在SYSU-MM01和RegDB数据集上的实验结果表明,ALGL优于最先进的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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